Neural networks for extraction of weak targets in high clutter environments

M. W. Roth
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引用次数: 43

Abstract

Because of the statistical nature of many types of clutter, a detection device must set a high threshold in order to maintain a reasonable false-alarm rate. However, by selecting this threshold setting, detections of small and medium size targets can be missed. An old but previously impractical technique for improving performance was to use all contacts from several scans and employ a very large bank of matched filters. This could achieve a detection on one or more of all possible target trajectories formed from stored contacts for each input detection. Neural network hardware offers new opportunities to implement such techniques. It is shown that feedforward and graded-response Hopfield neural networks can implement the optimum postdetection target track receiver. For the Hopfield net, the spurious states correspond to the important case of multiple track detection. Finally, the author presents simulations that show that substantial signal-to-noise gain can be achieved.<>
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高杂波环境下弱目标提取的神经网络
由于许多类型的杂波具有统计性质,检测设备必须设置较高的阈值,以保持合理的误报率。然而,通过选择该阈值设置,可能会错过对中小型目标的检测。提高性能的一种旧的但以前不切实际的技术是使用来自几次扫描的所有接触并使用非常大的匹配滤波器。这可以实现对每个输入检测的存储接触形成的所有可能目标轨迹中的一个或多个的检测。神经网络硬件为实现这些技术提供了新的机会。结果表明,前馈和梯度响应Hopfield神经网络可以实现最优的后检目标航迹接收机。对于Hopfield网络,杂散状态对应于多航迹检测的重要情况。最后,作者给出了仿真,表明可以获得可观的信噪比增益
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